the io monad mooly sagiv slides from john mitchell kathleen fisher simon peyton jones reading:...

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The IO Monad Mooly Sagiv Slides from John Mitchell Kathleen Fisher Simon Peyton Jones Reading: “Tackling the Awkward Squad” “Real World Haskell,” Chapter 7: I/O

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The IO Monad

Mooly SagivSlides from

John MitchellKathleen Fisher

Simon Peyton Jones

Reading: “Tackling the Awkward Squad”“Real World Haskell,” Chapter 7: I/O

Beauty...• Functional programming is beautiful:

– Concise and powerful abstractions• higher-order functions, algebraic data types, parametric polymorphism,

principled overloading, ...

– Close correspondence with mathematics• Semantics of a code function is the mathematical function• Equational reasoning: if x = y, then f x = f y• Independence of order-of-evaluation (Confluence, aka Church-Rosser)

e1 * e2

e1’ * e2 e1 * e2’

result

The compiler can choose the best

sequential or parallel evaluation

order

...and the Beast

• But to be useful as well as beautiful, a language must manage the “Awkward Squad”:– Input/Output– Imperative update– Error recovery (eg, timeout, divide by zero, etc.)– Foreign-language interfaces – Concurrency control

The whole point of a running a program is to interact with the external environment

and affect it

"Don't le

t the a

wkw

ard

squad fi

re o

ver

me R

obert B

runs

The Direct Approach

• Just add imperative constructs “the usual way”– I/O via “functions” with side effects:

– Imperative operations via assignable reference cells:

– Error recovery via exceptions– Foreign language procedures mapped to “functions”– Concurrency via operating system threads

• Can work if language determines evaluation order– Ocaml, Standard ML are good examples of this approach

putchar ‘x’ + putchar ‘y’

z = ref 0; z := !z + 1;f(z);w = !z (* What is the value of w? *)

But what if we are “lazy”?

• Example:– Output depends upon the evaluation order of (+)

• Example:– Output depends on how list is used– If only used in length ls, nothing will be printed

because length does not evaluate elements of list

In a lazy functional language, like Haskell, the order of evaluation is deliberately undefined, so the

“direct approach” will not work

res = putchar ‘x’ + putchar ‘y’

ls = [putchar ‘x’, putchar ‘y’]

Fundamental question

• Is it possible to regard pure Haskell as the basic programming paradigm, and add imperative features without changing the meaning of pure Haskell expressions?

Tackling the Awkward Squad

• Basic conflict– Laziness and side effects are incompatible

• Historical aside: “Jensen’s device” in Algol 60; see book (p96)

– Side effects are important!• History

– This conflict was embarrassing to the lazy functional programming community

– In early 90’s, a surprising solution (the monad) emerged from an unlikely source (category theory).

• Haskell IO monad tackles the awkward squad– I/O, imperative state, exceptions, foreign functions, concurrency – Practical application of theoretical insight by E Moggi

Web Server Example

• The reading uses a web server as an example• Lots of I/O, need for error recovery, need to call

external libraries, need for concurrency

Web server

Client 1 Client 2 Client 3 Client 4

1500 lines of Haskell

700 connections/sec

Writing High-Performance Server Applications in Haskell, by Simon Marlow

Monadic Input and Output

Problem

A functional program defines a pure function,

with no side effects

The whole point of running a program is to

have some side effect

The term “side effect” itself is misleading

Before Monads

• Streams– Program sends stream of requests to OS, receives stream of

responses• Continuations

– User supplies continuations to I/O routines to specify how to process results (will cover continuations Wed)

• World-Passing– The “State of the World” is passed around and updated, like

other data structures– Not a serious contender because designers didn’t know how

to guarantee single-threaded access to the world • Haskell 1.0 Report adopted Stream model

– Stream and Continuation models were discovered to be inter-definable

Stream Model: Basic Idea

• Move side effects outside of functional program• Haskell main :: String -> String

• Gets more complicated …– But what if you need to read more than one file? Or delete

files? Or communicate over a socket? ...

Haskell main

program

standard input

location (file or stdin)

standard output

location (file or stdout)

Wrapper Program, written in some other language

Stream Model• Move side effects outside of functional program• If Haskell main :: [Response] -> [Request]

• Laziness allows program to generate requests prior to processing any responses

Haskellprogram

[Response] [Request]

Stream Model• Enrich argument and return type of main to

include all input and output events

• Wrapper program interprets requests and adds responses to input

main :: [Response] -> [Request]data Request = ReadFile Filename

| WriteFile FileName String| …

data Response = RequestFailed| ReadOK String| WriteOk| Success | …

Example in Stream Model• Haskell 1.0 program asks user for filename, echoes name, reads

file, and prints to standard out

• The ~ denotes a lazy pattern, which is evaluated only when the corresponding identifier is needed

main :: [Response] -> [Request]main ~(Success : ~((Str userInput) : ~(Success : ~(r4 : _)))) = [ AppendChan stdout "enter filename\n", ReadChan stdin, AppendChan stdout name, ReadFile name, AppendChan stdout (case r4 of Str contents -> contents Failure ioerr -> "can’t open file") ] where (name : _) = lines userInput

Stream Model is Awkward!

• Hard to extend– New I/O operations require adding new constructors

to Request and Response types, modifying wrapper• Does not associate Request with Response– easy to get “out-of-step,” which can lead to deadlock

• Not composable– no easy way to combine two “main” programs

• ... and other problems!!!

Monadic I/O: The Key Idea

A value of type (IO t) is an “action”

When performed, an action may do some input/output and deliver a result

of type t

Eugenio Moggi

Monads

• General concept from category theory – Adopted in Haskell for I/O, side effects, …

• A monad consists of:– A type constructor M– A function bind :: M a -> ( a -> M b) -> M b– A function return :: a -> M a

• Plus: – Laws about how these operations interact

A Helpful Picture

A value of type (IO t) is an “action.” When performed, it may do some input/output before delivering a result

of type t

type IO t = World -> (t, World)

IO t

result :: t

Actions are First Class

• “Actions” are sometimes called “computations”• An action is a first-class value• Evaluating an action has no effect; performing

the action has the effect

A value of type (IO t) is an “action.” When performed, it may do some input/output before delivering a result

of type t

type IO t = World -> (t, World)

Simple I/O

getChar

Char

putChar

()Char

getChar :: IO CharputChar :: Char -> IO ()

main :: IO ()main = putChar ‘x’

Main program is an action of type IO ()

Connection Actions

• To read a character and then write it back out, we need to connect two actions

putChar

()

getChar

Char

The “bind” combinator lets us

make these connections

The Bind Combinator (>>=)

• We have connected two actions to make a new, bigger action

putChar

()

Char

getChar

(>>=) :: IO a -> (a -> IO b) -> IO b

echo :: IO ()echo = getChar >>= putChar

The (>>=) Combinator

• Operator is called bind because it binds the result of the left-hand action in the action on the right

• Performing compound action a >>= \x->b : – performs action a, to yield value r – applies function \x->b to r– performs the resulting action b{x <- r}– returns the resulting value v

b

v

axr

Printing a Character Twice

• The parentheses are optional because lambda abstractions extend “as far to the right as possible”

• The putChar function returns unit, so there is no interesting value to pass on

echoDup :: IO ()echoDup = getChar >>= (\c -> putChar c >>= (\() -> putChar c ))

The (>>) Combinator

• The “then” combinator (>>) does sequencing when there is no value to pass:

(>>) :: IO a -> IO b -> IO bm >> n = m >>= (\_ -> n)

echoDup :: IO ()echoDup = getChar >>= \c -> putChar c >> putChar c

echoTwice :: IO ()echoTwice = echo >> echo

Getting Two Characters

• We want to return (c1,c2).– But, (c1,c2) :: (Char, Char)– We need to return value of type IO(Char, Char)

• We need to have some way to convert values of “plain” type into the I/O Monad

getTwoChars :: IO (Char,Char)getTwoChars = getChar >>= \c1 -> getChar >>= \c2 -> ????

The return Combinator

• The action (return v) does no IO and immediately returns v:

return :: a -> IO a

return

getTwoChars :: IO (Char,Char)getTwoChars = getChar >>= \c1 -> getChar >>= \c2 -> return (c1,c2)

Main IO

• The main program is a single big IO operation

main :: IO ()

main= getLine >>= \cs -> putLine (reverse cs)

The “do” Notation• The “do” notation adds syntactic sugar to make

monadic code easier to read

• Do syntax designed to look imperative

-- Do NotationgetTwoCharsDo :: IO(Char,Char)getTwoCharsDo = do { c1 <- getChar ; c2 <- getChar ; return (c1,c2) }

-- Plain SyntaxgetTwoChars :: IO (Char,Char)getTwoChars = getChar >>= \c1 -> getChar >>= \c2 -> return (c1,c2)

Desugaring “do” Notation

• The “do” notation only adds syntactic sugar:

do { x<-e; es } = e >>= \x -> do { es }do { e; es } = e >> do { es }do { e } = edo {let ds; es} = let ds in do {es}

The scope of variables bound in a generator is the rest of the “do” expression

The last item in a “do” expression must be an expression

Syntactic Variations

• The following are equivalent:

do { x1 <- p1; ...; xn <- pn; q }

do x1 <- p1 ... xn <- pn q

do x1 <- p1; ...; xn <- pn; q

If semicolons are omitted, then the

generators must align. Indentation replaces

punctuation.

Bigger Example

• The getLine function reads a line of input:

getLine :: IO [Char]getLine = do { c <- getChar ; if c == '\n' then return [] else do { cs <- getLine; return (c:cs) }}

Note the “regular” code mixed with the monadic operations and the nested “do” expression

An Analogy: Monad as Assembly Line

• Each action in the IO monad is a stage in an assembly line• For an action with type IO a, the type

– tags the action as suitable for the IO assembly line via the IO type constructor

– indicates that the kind of thing being passed to the next stage in the assembly line has type a

• The bind operator “snaps” two stages together to build a compound stage

• The return operator converts a pure value into a stage in the assembly line

• The assembly line does nothing until it is turned on• The only safe way to “run” an IO assembly is to execute the

program, either using ghci or running an executable

1 2

• Running the program turns on the IO assembly line • The assembly line gets “the world” as its input and

delivers a result and a modified world• The types guarantee that the world flows in a single

thread through the assembly line

Powering the Assembly Line

Result

ghci or compiled program

Monad Laws

return x >>= f = f xm >>= return = m

do { x <- m1; y <- m2; m3 }

do { y <- do { x <- m1; m2 } m3}

=

x not in free vars of m3

m1 >>= (x. m2 >>= y. m3)) =

(m1 >>= (x. m2)) >>= y. m3)

Derived Laws for (>>) and done

done >> m = mm >> done = mm1 >> (m2 >> m3) = (m1 >> m2) >> m3

(>>) :: IO a -> IO b -> IO bm >> n = m >>= (\_ -> n)

done :: IO ()done = return ()

Reasoning

• Using the monad laws and equational reasoning, we can prove program properties

putStr :: String -> IO ()putStr [] = doneputStr (c:s) = putChar c >> putStr s

Proposition:

putStr r >> putStr s = putStr (r ++ s)

putStr :: String -> IO ()putStr [] = doneputStr (c:cs) = putChar c >> putStr cs

Proof: By induction on r.

Base case: r is []

putStr [] >> putStr s

= (definition of putStr)

done >> putStr s

= (first monad law for >>)

putStr s

= (definition of ++)

putStr ([] ++ s)

Induction case: r is (c:cs) …

Proposition:

putStr r >> putStr s = putStr (r ++ s)

Control Structures

• Values of type (IO t) are first class, so we can define our own control structures

• Example use:

forever :: IO () -> IO ()forever a = a >> forever a

repeatN :: Int -> IO () -> IO ()repeatN 0 a = return ()repeatN n a = a >> repeatN (n-1) a

Main> repeatN 5 (putChar 'h')

For Loops

• Values of type (IO t) are first class, so we can define our own control structures

• Example use:

for :: [a] -> (a -> IO b) -> IO ()for [] fa = return ()for (x:xs) fa = fa x >> for xs fa

Main> for [1..10] (\x -> putStr (show x))

Sequencing

• Example use:

sequence :: [IO a] -> IO [a]sequence [] = return []sequence (a:as) = do { r <- a; rs <- sequence as; return (r:rs) }

Main> sequence [getChar, getChar, getChar]

A list of IO actions

An IO action returning a list

First Class Actions

Slogan: First-class actions let programmers write application-specific

control structures

IO Provides Access to Files• The IO Monad provides a large collection of

operations for interacting with the “World”• For example, it provides a direct analogy to the

Standard C library functions for files:

openFile :: FilePath -> IOMode -> IO Handle hPutStr :: Handle -> String -> IO ()hGetLine :: Handle -> IO StringhClose :: Handle -> IO ()

References

• The IO operations let us write programs that do I/O in a strictly sequential, imperative fashion

• Idea: We can leverage the sequential nature of the IO monad to do other imperative things!

• A value of type IORef a is a reference to a mutable cell holding a value of type a

data IORef a -- Abstract typenewIORef :: a -> IO (IORef a)readIORef :: IORef a -> IO awriteIORef :: IORef a -> a -> IO ()

Example Using References

But this is terrible! Contrast with: sum [1..n]. Claims to need side effects, but doesn’t really

import Data.IORef -- import reference functions-- Compute the sum of the first n integerscount :: Int -> IO Intcount n = do { r <- newIORef 0; addToN r 1 } where addToN :: IORef Int -> Int -> IO Int addToN r i | i > n = readIORef r | otherwise = do { v <- readIORef r ; writeIORef r (v + i) ; addToN r (i+1)}

Example Using Referencesimport Data.IORef -- import reference functions-- Compute the sum of the first n integerscount :: Int -> IO Intcount n = do { r <- newIORef 0; addToN r 1 } where addToN :: IORef Int -> Int -> IO Int addToN r i | i > n = readIORef r | otherwise = do { v <- readIORef r ; writeIORef r (v + i) ; addToN r (i+1)}

Just because you can write C code in Haskell, doesn’t mean you should!

A Second Example• Track the number of chars written to a file

• Here it makes sense to use a reference

type HandleC = (Handle, IORef Int)

openFileC :: FilePath -> IOMode -> IO HandleCopenFileC file mode = do { h <- openFile file mode ; v <- newIORef 0 ; return (h,v) }

hPutStrC :: HandleC -> String -> IO()hPutStrC (h,r) cs = do { v <- readIORef r ; writeIORef r (v + length cs) ; hPutStr h cs }

The IO Monad as ADT

• All operations return an IO action, but only bind (>>=) takes one as an argument

• Bind is the only operation that combines IO actions, which forces sequentiality

• Within the program, there is no way out!

return :: a -> IO a(>>=) :: IO a -> (a -> IO b) -> IO b

getChar :: IO CharputChar :: Char -> IO ()... more operations on characters ...openFile :: [Char] -> IOMode -> IO Handle... more operations on files ...newIORef :: a -> IO (IORef a)... more operations on references ...

Irksome Restriction?

• Suppose you wanted to read a configuration file at the beginning of your program:

• The problem is that readFile returns an IO String, not a String

• Option 1: Write entire program in IO monad But then we lose the simplicity of pure code

• Option 2: Escape from the IO Monad using a function from IO String -> String But this is the very thing that is disallowed!

configFileContents :: [String] configFileContents = lines (readFile "config") -- WRONG! useOptimisation :: Bool useOptimisation = "optimise" ‘elem‘ configFileContents

Type-Unsafe Haskell Programming

• Reading a file is an I/O action, so in general it matters when we read the file

• But we know the configuration file will not change during the program, so it doesn’t matter when we read it

• This situation arises sufficiently often that Haskell implementations offer one last unsafe I/O primitive: unsafePerformIO

unsafePerformIO :: IO a -> aconfigFileContents :: [String] configFileContents = lines(unsafePerformIO(readFile "config"))

unsafePerformIO

• The operator has a deliberately long name to discourage its use

• Its use comes with a proof obligation: a promise to the compiler that the timing of this operation relative to all other operations doesn’t matter

• Breaks type safety

unsafePerformIO :: IO a -> a

Result

actInventWorld

DiscardWorld

Implementation• GHC uses “world-passing semantics” for the IO monad

• It represents the “world” by an un-forgeable token of type World, and implements bind and return as:

• Using this form, the compiler can do its normal optimizations. The dependence on the world ensures the resulting code will still be single-threaded

• The code generator then converts the code to modify the world “in-place.”

type IO t = World -> (t, World)

return :: a -> IO a return a = \w -> (a,w) (>>=) :: IO a -> (a -> IO b) -> IO b (>>=) m k = \w -> case m w of (r,w’) -> k r w’

Monads

• What makes the IO Monad a Monad?• A monad consists of:– A type constructor M– A function bind :: M a -> ( a -> M b) -> M b– A function return :: a -> M a

• Plus: Laws about how these interact

A Denotational Semantics?

• type IO a = World -> (a, World)• loop:: IO()• loop = loop• loop =?• loopX:: IO()• loopX = putchar ‘x’ >>= loopX• loopX =• Can be defined with traces• Another alternative is an operational semantics

Summary

• A complete Haskell program is a single IO action called main. Inside IO, code is single-threaded

• Big IO actions are built by gluing together smaller ones with bind (>>=) and by converting pure code into actions with return

• IO actions are first-class – They can be passed to functions, returned from functions, and

stored in data structures– So it is easy to define new “glue” combinators

• The IO Monad allows Haskell to be pure while efficiently supporting side effects

• The type system separates the pure from the effectful code

Comparison

• In languages like ML or Java, the fact that the language is in the IO monad is baked in to the language. There is no need to mark anything in the type system because it is everywhere.

• In Haskell, the programmer can choose when to live in the IO monad and when to live in the realm of pure functional programming

• So it is not Haskell that lacks imperative features, but rather the other languages that lack the ability to have a statically distinguishable pure subset